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Articles

SmartSpace AI: An Intelligent Approach for Smart and Personalized Design Automation

Abstract

Traditional interior design relies on manual experiences, subjective evaluations, and professionally
guided visualizations, which make it inaccessible for the average user. With the development of Artificial Intelligence,
new methods have gradually appeared that automate spatial understanding, generate design concepts, and visualize
highly realistic renderings. SmartSpace.AI is an AI-driven interior automation system that integrates a series of multimodal foundation models: LLaVA for semantic room analysis, Depth Anything V2 for monocular depth estimation,
Stability AI for photorealistic style transformation, and Three.js for interactive 3D reconstruction. In this system, room
images are intelligently analyzed, furniture categories predicted, layout constraints estimated, multiple design variations
generated, and interactive 3D models constructed that can accept user interactions in real time. Experimental results
show that SmartSpace.AI improves the efficiency of user decision-making up to 65%, reduces the number of design
cycles manually involved, and allows non-experts to reach a professional output. The current work illustrates how
modern multi-modal AI can democratize interior design and serve as a next-generation design assistant.

References

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